Significant progress has been made in boundary detection with the help of convolutional neural networks. Recent boundary detection models not only focus on real object boundary detection but also "crisp" boundaries (precisely localized along the object's contour). There are two methods to evaluate crisp boundary performance. One uses more strict tolerance to measure the distance between the ground truth and the detected contour. The other focuses on evaluating the contour map without any postprocessing. In this study, we analyze both methods and conclude that both methods are two aspects of crisp contour evaluation. Accordingly, we propose a novel network named deep refinement network (DRNet) that stacks multiple refinement modules to achieve richer feature representation and a novel loss function, which combines cross-entropy and dice loss through effective adaptive fusion. Experimental results demonstrated that we achieve state-of-the-art performance for several available datasets.
翻译:在革命性神经网络的帮助下,在边界探测方面取得了显著进展。最近的边界探测模型不仅侧重于实际物体边界探测,而且侧重于“crisp”边界(精确地在物体的轮廓上定位 ) 。有两种方法来评估精确的边界性能。一种是使用更严格的容忍度来测量地面真相和探测到的轮廓之间的距离。另一种是侧重于在没有任何后处理的情况下对轮廓图进行评估。在这个研究中,我们分析两种方法并得出结论,这两种方法都是轮廓评估的两个方面。因此,我们建议建立一个名为深精细精细网络(DRNet)的新型网络,将多个精细化模块堆叠在一起,以实现更丰富的地貌表现和新颖的损失功能,通过有效的适应聚合将交叉的作物和骰子损失结合起来。实验结果表明,我们在若干可用的数据集中取得了最先进的性能。